活β细胞胰岛素颗粒4D定量分析的早期经验

E. Cordelli, M. Merone, F. D. Giacinto, B. Daniel, G. Maulucci, S. Sasson, P. Soda
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引用次数: 3

摘要

胰腺细胞生物合成胰岛素并将其包装成胰岛素颗粒,胰岛素颗粒的分泌受到调节以维持血糖稳态。对胰岛素颗粒动力学的详细了解可以揭示细胞内处理和分泌这些颗粒的缺陷,导致胰岛素分泌受损,从而导致几种代谢性疾病的发展,包括2型糖尿病和代谢综合征。使用旋转盘共聚焦和光片显微镜与快速顺序扫描,使快速体积成像,允许在高空间和时间分辨率监测胰岛素颗粒的动态。然而,在单个细胞内获得准确的3D成像和粒子跟踪的所有信息是复杂和具有挑战性的,并且从粒子跟踪数据中提取信息需要分析运动轨迹的片段。为此,我们在本研究中对胰岛素颗粒在葡萄糖刺激的INS- 1E β细胞中的四维运动进行了定量分析。首先,我们通过一种基于计算机的自动方法,依靠两步迭代过程,追踪细胞内的每个颗粒。接下来,我们删除了伪影,并引入了一组描述颗粒动力学的定量电影特征。最后,我们实施了一种基于无监督机器学习的探索性数据分析,它可以区分两组具有不同动态特征的颗粒:第一个池的特征是扩散动态行为,第二个池的特征是更直接和有针对性的运动。这些池可能具有不同的功能作用和/或与β细胞中的其他结构和细胞器相互作用,这些结构和细胞器可能在病理环境中选择性受损。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Early experiences in 4D quantitative analysis of insulin granules in living beta-cells
Pancreatic beta cells biosynthesize and package insulin in insulin granules, whose secretion is regulated to maintain blood glucose homeostasis. The detailed knowledge of the dynamics of insulin granules could reveal defects in the intracellular handling and secretion of these granules, leading to impaired insulin secretion and consequently to the development of several metabolic diseases, including type-2 diabetes and the metabolic syndrome. The use of spinning disk confocal and light sheet microscopy with fast sequential scanning that enable rapid volumetric imaging, allows to monitor at high spatial and temporal resolution the dynamics of insulin granules. However, obtaining all the information for accurate 3D imaging and particle tracking within a single cell is complex and challenging, and extracting information from the particle tracking data requires to analyse the segments of motion trajectories. To this aim, we present in this study a quantitative analysis of the 4D motion of insulin granules in glucose-stimulated INS- 1E beta cells. First, we tracked each granule inside the cells via a computer-based automatic approach relying on a two-step iterative process. Next, we removed the artifacts and introduced a set of quantitative cinematic features describing granule dynamics. Finally, we implemented an unsupervised machine learning based exploratory data analysis, which allows to distinguish two sets of granules marked by distinct dynamics: a first pool is characterized by a diffusive dynamic behavior, and a second pool that is characterized by a more directed and targeted movement. These pools may have distinct functional roles and/or interactions with other structures and organelles in beta cells that could be selectively impaired in pathological settings.
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